Back to Search Start Over

A large, curated, open-source stroke neuroimaging dataset to improve lesion segmentation algorithms

Authors :
Sook-Lei Liew
Bethany Lo
Miranda R. Donnelly
Artemis Zavaliangos-Petropulu
Jessica N. Jeong
Giuseppe Barisano
Alexandre Hutton
Julia P. Simon
Julia M. Juliano
Anisha Suri
Tyler Ard
Nerisa Banaj
Michael R. Borich
Lara A. Boyd
Amy Brodtmann
Cathrin M. Buetefisch
Lei Cao
Jessica M. Cassidy
Valentina Ciullo
Adriana B. Conforto
Steven C. Cramer
Rosalia Dacosta-Aguayo
Ezequiel de la Rosa
Martin Domin
Adrienne N. Dula
Wuwei Feng
Alexandre R. Franco
Fatemeh Geranmayeh
Alexandre Gramfort
Chris M. Gregory
Colleen A. Hanlon
Brenton G. Hordacre
Steven A. Kautz
Mohamed Salah Khlif
Hosung Kim
Jan S. Kirschke
Jingchun Liu
Martin Lotze
Bradley J. MacIntosh
Maria MatarĂ³
Feroze B. Mohamed
Jan E. Nordvik
Gilsoon Park
Amy Pienta
Fabrizio Piras
Shane M. Redman
Kate P. Revill
Mauricio Reyes
Andrew D. Robertson
Na Jin Seo
Surjo R. Soekadar
Gianfranco Spalletta
Alison Sweet
Maria Telenczuk
Gregory Thielman
Lars T. Westlye
Carolee J. Winstein
George F. Wittenberg
Kristin A. Wong
Chunshui Yu
Publication Year :
2021
Publisher :
Cold Spring Harbor Laboratory, 2021.

Abstract

Accurate lesion segmentation is critical in stroke rehabilitation research for the quantification of lesion burden and accurate image processing. Current automated lesion segmentation methods for T1-weighted (T1w) MRIs, commonly used in rehabilitation research, lack accuracy and reliability. Manual segmentation remains the gold standard, but it is time-consuming, subjective, and requires significant neuroanatomical expertise. We previously released a large, open-source dataset of stroke T1w MRIs and manually segmented lesion masks (ATLAS v1.2, N=304) to encourage the development of better algorithms. However, many methods developed with ATLAS v1.2 report low accuracy, are not publicly accessible or are improperly validated, limiting their utility to the field. Here we present ATLAS v2.0 (N=955), a larger dataset of T1w stroke MRIs and manually segmented lesion masks that includes both training (public) and test (hidden) data. Algorithm development using this larger sample should lead to more robust solutions, and the hidden test data allows for unbiased performance evaluation via segmentation challenges. We anticipate that ATLAS v2.0 will lead to improved algorithms, facilitating large-scale stroke rehabilitation research.

Details

Database :
OpenAIRE
Accession number :
edsair.doi...........b24672a4f1767c7517b9c50edd50cac2